Sentiment Polarity Classification Using Structural Features

D. Ansari
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引用次数: 10

Abstract

This work investigates the role of contrasting discourse relations signaled by cue phrases, together with phrase positional information, in predicting sentiment at the phrase level. Two domains of online reviews were chosen. The first domain is of nutritional supplement reviews, which are often poorly structured yet also allow certain simplifying assumptions to be made. The second domain is of hotel reviews, which have somewhat different characteristics. A corpus is built from these reviews, and manually tagged for polarity. We propose and evaluate a few new features that are realized through a lightweight method of discourse analysis, and use these features in a hybrid lexicon and machine learning based classifier. Our results show that these features may be used to obtain an improvement in classification accuracy compared to other traditional machine learning approaches.
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基于结构特征的情感极性分类
本研究探讨了由提示短语和短语位置信息组成的对比语篇关系在短语层面预测情感的作用。选择了两个在线评论领域。第一个领域是营养补充剂评论,通常结构不佳,但也允许做出某些简化的假设。第二个领域是酒店评论,它们有一些不同的特点。从这些评论中构建一个语料库,并手动标记极性。我们提出并评估了一些通过轻量级话语分析方法实现的新特征,并将这些特征用于基于词典和机器学习的混合分类器中。我们的研究结果表明,与其他传统的机器学习方法相比,这些特征可以用来提高分类精度。
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